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使用真实假设数量上限的多重检验程序及其在评估高维脑电图数据中的应用。

Multiple test procedures using an upper bound of the number of true hypotheses and their use for evaluating high-dimensional EEG data.

作者信息

Hemmelmann Claudia, Ziegler Andreas, Guiard Volker, Weiss Sabine, Walther Mario, Vollandt Rüdiger

机构信息

Institute of Medical Statistics, Computer Sciences and Documentation, Friedrich Schiller University of Jena, Bachstrasse 18, Jena, Germany.

出版信息

J Neurosci Methods. 2008 May 15;170(1):158-64. doi: 10.1016/j.jneumeth.2007.12.013. Epub 2008 Jan 4.

Abstract

Frequency analyses of EEG data yield large data sets, which are high-dimensional and have to be evaluated statistically without a large number of false positive statements. There exist several methods to deal with this problem in multiple comparisons. Knowing the number of true hypotheses increases the power of some multiple test procedures, however the number of true hypotheses is unknown, in general, and must be estimated. In this paper, we derive two new multiple test procedures by using an upper bound for the number of true hypotheses. Our first procedure controls the generalized family-wise error rate, and thus is an improvement of the step-down procedure of Hommel and Hoffmann [Hommel G., Hoffmann T. Controlled uncertainty. In: Bauer P. Hommel G. Sonnemann E., editors. Multiple Hypotheses Testing, Heidelberg: Springer 1987;ISBN 3540505598:p. 154-61]. The second new procedure controls the false discovery proportion and improves upon the approach of Lehmann and Romano [Lehmann E.L., Romano J.P. Generalizations of the familywise error rate. Ann. Stat. 2005;33:1138-54]. By Monte-Carlo simulations, we show how the gain in power depends upon the accuracy of the estimate of the number of true hypotheses. The gain in power of our procedures is demonstrated in an example using EEG data on the processing of memorized lexical items.

摘要

脑电图(EEG)数据的频率分析会产生大量数据集,这些数据集具有高维度性,并且必须在不产生大量假阳性结果的情况下进行统计评估。在多重比较中存在几种方法来处理这个问题。知道真实假设的数量会提高一些多重检验程序的功效,然而,真实假设的数量通常是未知的,必须进行估计。在本文中,我们通过使用真实假设数量的一个上界推导出两种新的多重检验程序。我们的第一个程序控制广义的族系错误率,因此是对霍梅尔和霍夫曼的逐步检验程序的改进[霍梅尔 G.,霍夫曼 T. 可控不确定性。载于:鲍尔 P.,霍梅尔 G.,索内曼 E. 编辑。多重假设检验,海德堡:施普林格 1987 年;ISBN 3540505598:第 154 - 161 页]。第二个新程序控制错误发现比例,并改进了莱曼和罗曼诺的方法[莱曼 E.L.,罗曼诺 J.P. 族系错误率的推广。《统计学年鉴》2005 年;33:1138 - 1154]。通过蒙特卡罗模拟,我们展示了功效的提升如何取决于真实假设数量估计的准确性。我们程序的功效提升在一个使用关于记忆词汇项目处理的脑电图数据的例子中得到了证明。

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